Multistate process data are common in studies of chronic diseases such as cancer. These data are ideal for precision medicine purposes as they can be leveraged to improve more refined health outcomes, compared to standard survival outcomes, as well as incorporate patient preferences regarding quantity versus quality of life. However, there are currently no methods for the estimation of optimal individualized treatment rules with such data. In this article, we propose a nonparametric outcome weighted learning approach for this problem in randomized clinical trial settings. The theoretical properties of the proposed methods, including Fisher consistency and asymptotic normality of the estimated expected outcome under the estimated optimal individualized treatment rule, are rigorously established. A consistent closed-form variance estimator is provided and methodology for the calculation of simultaneous confidence intervals is proposed. Simulation studies show that the proposed methodology and inference procedures work well even with small sample sizes and high rates of right censoring. The methodology is illustrated using data from a randomized clinical trial on the treatment of metastatic squamous-cell carcinoma of the head and neck.
翻译:在癌症等慢性疾病研究中,多状态过程数据是常见的。这些数据对于精确医学而言是理想的,因为可以利用这些数据来改进比标准生存结果更精确的健康结果,并纳入病人在数量与生活质量方面的偏好;然而,目前没有方法用这些数据来估计最佳的个性化治疗规则;在本条中,我们建议对随机临床试验环境中的这一问题采取非对称结果加权学习方法; 严格确立拟议方法的理论特性,包括渔民的一致性和根据估计的最佳个人化治疗规则估计的预期结果的无症状性; 提供一致的封闭式差异估计值,并提出同时计算信任期的方法; 模拟研究显示,拟议的方法和推论程序即使在小样尺寸和高权利检查率的情况下也很有效; 使用随机临床试验中关于治疗头部和颈部甲型细胞癌的数据来说明这一方法。